Journal of the American Statistical Association

While deep neural networks (DNNs) are used for prediction, inference on DNN-estimated subject-specific means for categorical or exponential family outcomes remains underexplored. We address this by proposing a DNN estimator under generalized nonparametric regression models (GNRMs) and developing a rigorous inference framework. Unlike existing approaches that assume independence between estimation…

Computer ScienceComputer Vision and Pattern RecognitionGenerative Adversarial Networks and Image SynthesisPhysical Sciences

Optogenetics is a powerful neuroscience technique for studying how neural circuit manipulation affects behavior. Standard analysis conventions discard information and severely limit the scope of the causal questions that can be probed. To address this gap, we 1) draw connections to the causal inference literature on sequentially randomized experiments, 2) propose nonparametric estimators for anal…

Atomic and Molecular Physics, and OpticsPhysical SciencesPhysics and AstronomyQuantum Mechanics and Applications

As the spatial features of multivariate data are increasingly central in researchers' applied problems, there is a growing demand for novel spatially-aware methods that are flexible, easily interpretable, and scalable to large data. We develop inside-out cross-covariance (IOX) models for multivariate spatial likelihood-based inference. IOX leads to valid cross-covariance matrix functions which we…

Economics and EconometricsEconomics, Econometrics and FinanceSocial SciencesSpatial and Panel Data Analysis
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